26

Currently, I am using a for loop to read csv files from a folder. After reading the csv file, I am storing the data into one row of a dictionary. When I print the data types using "print(list_of_dfs.dtypes)" I receive:

dtype: object DATETIME : object VALUE : float64 ID : int64 ID Name: object.

Note that this is a nested dictionary with thousands of values stored in each of these data fields. I have 26 rows of the structure listed above. I am trying to append the dictionary rows into a dataframe where I will have only 1 row consisting of the datafields:

Index DATETIME VALUE ID ID Name.

Note: I am learning python as I go. I tried using an array to store the data and then convert the array to a dataframe but I could not append the rows of the dataframe.

Using the dictionary method I attempted "df = pd.Dataframe(list_of_dfs)" This throws an error.

list_of_dfs = {} 

for I in range(0,len(regionLoadArray)
list_of_dfs[I] = pd.read_csv(regionLoadArray[I]) 

#regionLoadArray contains my- file names from list directory.

dataframe = pd.DataFrame(list_of_dfs)
#this method was suggested at thispoint.com for nested dictionaries.
#This is where my error occurs^

ValueError: If using all scalar values, you must pass an index

I appreciate any assistance with this issue as I am new to python. My current goals is to simply produce a dataframe with my Headers that I can then send to a csv.

4 Answers 4

26

Depending on your needs, a simple workaround could be:

dct = {'col1': 'abc', 'col2': 123}
dct = {k:[v] for k,v in dct.items()}  # WORKAROUND
df = pd.DataFrame(dct)

which results in

print(df)

  col1  col2
0  abc   123
16

Pandas unfortunately always needs an index when creating a DataFrame. You can either set it yourself, or use an object with the following structure so pandas can determine the index itself:

    data= {'a':[1],'b':[2]}

Since it won't be easy to edit the data in your case,

A hacky solution is to wrap the data into a list

    dataframe = pd.DataFrame([list_of_dfs])
3
  • 1
    The hacky solution was a clever one! Not sure if there are any caveats though.
    – Jakob
    Commented May 11, 2023 at 15:40
  • Can someone explain why this works?
    – Nathan Dai
    Commented Jun 8, 2023 at 8:20
  • 1
    @NathanDai it is because a list type inherently has an index. So putting data without an index into a list element gives it an index. Pandas Dataframe requires the data to have an index. Commented Jun 10, 2023 at 16:03
8

This error occurs because pandas needs an index. At first this seems sort of confusing because you think of list indexing. What this is essentially asking for is a column number for each dictionary to correspond to each dictionary. You can set this like so:

import pandas as pd
list = ['a', 'b', 'c', 'd']
df = pd.DataFrame(list, index = [0, 1, 2, 3])

The data frame then yields:

   0  
0 'a'
1 'b'
2 'c'
3 'd'

For you specifically, this might look something like this using numpy (not tested):

list_of_dfs = {} 

for I in range(0,len(regionLoadArray)):
    list_of_dfs[I] = pd.read_csv(regionLoadArray[I]) 

ind = np.arange[len(list_of_dfs)]

dataframe = pd.DataFrame(list_of_dfs, index = ind)
8
  • I attempted adding the index as described above by introducing the index array and assigning the value in my for loop: "index[I] = I" and finally generating the dataframe using the index. However I receive the error message: " shape of passed values is {0} , indices imply {1}.format(passed,implied) Commented Aug 23, 2019 at 19:39
  • @Lonsdale_Energy, it needs the entire list. See my edits. Commented Aug 23, 2019 at 19:44
  • I assume np is numpy. error "modules 'numpy' has no attribute 'arrange' " Commented Aug 23, 2019 at 19:49
  • Ah, this is a typo. It should be 'arange'. Yes, np is numpy. I have changed the answer. Commented Aug 23, 2019 at 19:54
  • Gotcha, I should have figured that one out. That worked but now I have the error: "built+in_function_or_method' object is not subscriptable. Commented Aug 23, 2019 at 19:57
5
import pandas as pd

d = [{"a": 1, "b":2, "c": 3},
    {"a": 4, "b":5, "c": 6},
    {"a": 7, "b":8, "c": 9}
]

pd.DataFrame(d, index=list(range(len(d))))

returns:

   a    b   c
0   1   2   3
1   4   5   6
2   7   8   9

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